Upload
others
View
3
Download
0
Embed Size (px)
Citation preview
Transportation Engineering, Planning & Policy Consultants
Final Draft Report
FAF4 FREIGHT TRAFFIC ASSIGNMENT
Submitted to
Oak Ridge National Laboratory
Submitted by
Maks Inc.
August 22, 2016
FAF3 Freight Traffic Analysis i March 23, 2011
Table of Contents Page
CHAPTER 1: INTRODUCTION ........................................................................................... 1-1 1.1 Background ...................................................................................................................... 1-1 1.2 Objectives of the FAF4 Project ........................................................................................ 1-1 1.3 Objectives of FAF4 Freight Traffic Assignment .............................................................. 1-2 1.4 Overview of the Methodology ......................................................................................... 1-2 1.5 Organization of the Report............................................................................................... 1-3
CHAPTER 2: FAF4 FREIGHT NETWORK UPDATE AND 2008 HPMS DATA
INTEGRATION ............................................................................................................. 2-1 2.1 Introduction ...................................................................................................................... 2-1 2.2 FAF4 Network and HPMS 2012 Data Integration Process .............................................. 2-1
2.2.1 Route Matching................................................................................................... 2-1 2.2.2 Reassigning Mileposts ........................................................................................ 2-3 2.2.3 Recalibrating Mileposts ...................................................................................... 2-3
2.3 Quality Assurance Analysis ............................................................................................. 2-4 2.4 Summary of Freight Network Development .................................................................... 2-5
CHAPTER 3: TRUCK PAYLOAD EQUIVALENCY FACTOR....................................... 3-1 3.1 Introduction ...................................................................................................................... 3-1 3.2 Tonnage to Truck Payload Conversion Process .............................................................. 3-1
3.2.1 Truck Conversion – Example ............................................................................. 3-8 3.3 Dynamic Virtual OD Allocation .................................................................................... 3-10
CHAPTER 4: FREIGHT TRUCK ASSIGNMENT AND CALIBRATION...................... 4-1 4.1 Introduction ...................................................................................................................... 4-1 4.2 Network Preparation ........................................................................................................ 4-1
4.2.1 Impedance Function ............................................................................................ 4-1 4.2.2 Free Flow Travel Speed ...................................................................................... 4-1 4.2.3 Travel Impedance ............................................................................................... 4-2 4.2.4 Link Capacity ...................................................................................................... 4-3
4.3 Assignment Algorithm and Calibration ........................................................................... 4-4 4.3.1 Assignment Algorithm ........................................................................................ 4-4 4.3.2 Freight Assignment Calibration .......................................................................... 4-5
CHAPTER 5: Assignment Reliability Check ........................................................................ 5-9 5.1 Introduction ...................................................................................................................... 5-9
5.1.1 VMT Checks ..................................................................................................... 5-10 5.1.2 Co-efficient of Variation ................................................................................... 5-12 5.1.3 Evaluation of the Network Assignment Results with Traffic Counts Data ...... 5-13 5.1.4 Model RMSE Checks ....................................................................................... 5-13 5.1.5 Scatter Plot Checks ........................................................................................... 5-13
5-14
CHAPTER 6: CONCLUSIONS ............................................................................................. 6-1
FAF4 Freight Traffic Assignment ii August 31st, 2016
Table of Contents (Continued) Page
List of Appendices
Appendix A Truck Equivalency Factors .................................................................................... A-1
Appendix B FAF3 Commodities ................................................................................................ B-1
List of Tables
Table 2-1. LRS Alignment Codes ............................................................................................................. 2-3 Table 2-2. FAF4 Network Missing Data Lookup Tables .......................................................................... 2-5 Table 3-1. Truck Configurations ............................................................................................................... 3-3 Table 3-2. Truck-Body Types ................................................................................................................... 3-4 Table 3-3. Truck Allocation Factors ......................................................................................................... 3-5 Table 3-4. Definition of the Conversion Factor Equations ....................................................................... 3-5 Table 3-5. Empty Truck Factors ............................................................................................................... 3-7 Table 3-6. FAF Data with Zone-Distance ................................................................................................. 3-8 Table 3-7. Tonnage Allocated to the Five Truck Types ........................................................................... 3-8 Table 3-8. Annual Truck Traffic, Loaded Trucks ..................................................................................... 3-9 Table 3-9. Annual Truck Traffic, Loaded and Empty Trucks .................................................................. 3-9 Table 3-10. Annual Truck Traffic by Truck Type .................................................................................. 3-10 Table 3-11. FAF Data with Annual Truck Traffic .................................................................................. 3-10 Table 3-12. Annual Truck Traffic Summary .......................................................................................... 3-10 Table 4-1. Speed Limits (mph) for Missing HPMS Speed Data ............................................................... 4-2 Table 1: Assignment Reliability Test Criteria ......................................................................................... 5-10
List of Figures
Figure 2-1. Route Matching Flow Diagram .............................................................................................. 2-2 Figure 2-2. HPMS 2012 Combination Truck Volume on FAF4 Network ................................................ 2-6 Figure 3-1. Truck Conversion Flow Diagram ........................................................................................... 3-2 Figure 3-2: Illustrative Example of Truck Configuration used in FAF ..................................................... 3-3 Figure 3-3: Illustrative Example of Major Body Type .............................................................................. 3-4 Figure 3-4. Virtual Disaggregation Flow Diagram ................................................................................. 3-11 Figure 4-1. Comparison of AON and SUE Truck Traffic Assignment .................................................... 4-5 Figure 4-2. Base Year 2012 FAF4 Truck Flow on FAF4 Highway Network ............................................ 4-7 Figure 4-3. Year 2040 FAF4 Truck Flow on FAF4 Highway Network ..................................................... 4-8
FAF4 Freight Traffic Assignment 1-1 August 31st, 2016
CHAPTER 1: INTRODUCTION
1.1 Background
The Federal Highway Administration (FHWA), in cooperation with other U.S. Department of
Transportation (DOT) modal administrations having freight responsibilities, developed the first
Freight Analysis Framework (FAF) in 2002. Since its inception, the FAF freight database went
through several updates and has been used in a variety of transportation analyses including
highway capacity and bottleneck assessments, truck size and weight studies, evaluations of the
benefits of strategic investments in transportation infrastructure, impacts of changes in road-
pricing policies, multimodal freight policy analysis, impacts of toll proposals on shipper choice
decisions, and the impact on national freight movement of natural and manmade disasters
(e.g., the I-40 bridge collapse in Oklahoma in 2002; the I-95 bridge at Bridgeport, Connecticut in
2004; the impact on freight movement due to Katrina in 2005, the Collapse of the I-35W bridge
in Minneapolis in 2007; and others), and many others.
Given its importance to national and state freight flow analysis, the FAF version 4 (FAF4)
commodity flow data updated and enhanced by the Oak Ridge National Laboratory (ORNL) for
FHWA to estimate the dollar value and tons of shipments between 132 regions used in the 2012
Commodity Flow Survey (CFS) and eight international trade regions. These flows are broken
down by type of commodity and mode of transport. The FAF4 commodity flow data are
benchmarked to calendar year 2012, with a forecast for the year 2045. In the earlier version of
FAF, the freight network assignments were carried out using a low accuracy network and needed
an updated version of freight analysis network that can be developed using the State’s geospatial
road network submittal. Therefore, the FAF version 3 highway network database and its
inclusive traffic assignments were updated and accommodated as part of the FAF4 network data
products and approach.
1.2 Objectives of the FAF4 Project
To update and improve the FAF3 database, FHWA recently developed the next generation FAF4
freight origin-destination (O-D) database using the 2012 CFS and other public data sources.
Intended in part to address issues and lessons learned from the earlier FAF products, some of the
primary objectives of the development of the FAF4 data were to
• Provide data and analytical capability to support various Federal needs related to policy
and legislative issues for the new planning horizon
• Provide leadership to develop, maintain, and update data to meet the growing demand for
freight data and minimize the gap among FHWA, State DOTs and metropolitan planning
organizations (MPOs)
• Update the FAF network flow database
• Make FAF4 data more transparent to all public and private users outside the U.S. DOT.
FAF4 Freight Traffic Assignment 1-2 August 31st, 2016
1.3 Objectives of FAF4 Freight Traffic Assignment
This study is directed at conducting a national highway freight analysis designed to estimate the
base year 2012 and the 2045 forecasted FAF truck flow and assess the system-wide congestion
related performance elements of the nation’s highway systems. The overall objectives of the
FAF3 Freight Traffic Analysis are to prepare:
• Developed new FAF network using Highway Performance Monitoring System (HPMS)
2012 Geospatial data submittal
• Integrate bridge underpass, overpass and truck restriction information as part of the
network
• Accommodate new FAF zones as part of the network assignment
• Updated FAF highway network coverage data with HPMS) 2010 data elements essential
for freight network assignment
• Conflate FAF3 assignments related attributes to the new FAF network
• Update FAF O-D share allocation matrix using the Warehouse distribution database
developed in 2008 by FHWA
• Use demand responsive dynamic allocation for FAF4 truck O-D for subsequent freight
network assignment using the HPMS combination truck traffic as a base reference
• Develop a database of freight truck flows (freight assignment) on the highway network
for the base year 2012 and forecasted year 2045
• Produce FAF4 maps depicting national freight flows and congestion for the years 2012
and 2045.
1.4 Overview of the Methodology
The overall methodology of the Freight Traffic Analysis research project covers seven general
areas:
1. FAF4 network development and integration of 2012 HPMS database
2. Conflation of FAF3 assignment related attributes to new FAF4 network
3. Pre-assign non-FAF4 traffic counts to the FAF4 highway network
4. Update if necessary, truck trips, payload, trip length distribution
5. Apply virtual FAF O-D allocation for macro level assignment using the HPMS
combination trucks counts as a reference.
6. Assign FAF4 O-Ds (2012 and 2045) to the FAF highway network
7. Prepare variation and reliability for each of the data sources and assignment results
8. Documentation.
FAF4 Freight Traffic Assignment 1-3 August 31st, 2016
1.5 Organization of the Report
Chapter 2 discusses methodologies and steps used to develop freight highway networks using the
latest version of the National Highway Planning Network (NHPN), the HPMS database, and
input from other State DOT agencies. Chapter 3 describes the development of tonnage to truck
conversion procedures and methodology adopted to disaggregate the 132 FAF4 freight analysis
zones to the required number of virtual loading/unloading points. Chapter 4 describes the freight
assignment models and associated calibration procedures utilized for the development of base
year 2012 and year 2045 network flows. Chapter 5 discuss the assignment reliability checks.
Chapter 6 presents conclusions.
FAF4 Freight Traffic Assignment 1-4 August 31st, 2016
This page intentionally left blank
FAF4 Freight Traffic Assignment 2-1 August 31st, 2016
CHAPTER 2: FAF4 FREIGHT NETWORK UPDATE AND 2008 HPMS DATA INTEGRATION
2.1 Introduction
FAF2 geospatial network coverage was used as the basis to update FAF network. It represents
more than 446,000 miles of the nation’s highways comprised of Rural Arterials, Urban Principal
Arterials, and all National Highway System (NHS) routes. The following roadways are
included:
• Interstate highways
• Other FHWA designated NHS routes
• National Network (NN) routes that are not part of NHS
• Other rural and urban principal arterials
• Intermodal connectors
• Rural minor arterials for those counties that are not served by either NN or NHS routes
• Urban bypass and streets as appropriate for network connectivity.
Updates from the FAF4 network include:
• Updates to NHS designation and intermodal revisions current to version 2015.4 releases
• Additions or updates to urban bypass or other state specific highway alignment including
interstate
• Integration and updating of NN and long combination vehicle (LCV) designations, state
link specific truck restrictions, clearances, and hazmat route restrictions
2.2 FAF4 Network and HPMS 2012 Data Integration Process
The 2012 HPMS database was selected for the network update. Since HPMS is a state specific
database, the FAF national network data was then further processed to minimize the attribute
discrepancy at the state/or urban boundary and at other locations where link specific data gaps
exist. For missing and non-sampled links, truck traffic percentages were updated using a
combination of state specific functional class averages and/or correlations with adjacent link
truck percentages. The 2045 values for average traffic volume and truck traffic were estimated
using the state growth factor reported in the HPMS 2012 database and projected to 2045 using a
linear growth algorithm. The following sections describe the work process performed to update
the FAF4 network with the 2012 HPMS database.
2.2.1 Route Matching
The HPMS provide LRS information. Maks Inc. utilizes a Multifaceted Analysis Tools (MFAT), an in-house proprietary software tool that employs algorithms to relate the
HPMS and FAF data using, as necessary, primary and secondary signage, mileposts, and translated LRS identifiers. The route matching flow diagram is illustrated in
Figure 2-1. Table 2-1 shows LRS alignment codes. For section with missing LRS, Sign1 was
used as reference system.
FAF4 Freight Traffic Assignment 2-2 August 31st, 2016
Figure 2-1. Route Matching Diagram
Get the HPMS beginning and ending mileposts, or user defined mileposts.
Determine if the FAF mileposts are the either same as, or within the HPMS
milepost range.
Match Found
Match
Foun
Determine if the overall length of the NHS and HPMS routes are the same.
No Alignment.
Record LRS alignment code as described in Table 2-1.
Yes
Yes
Yes
Search for HPMS Records using the first 12 characters of the FAF LRS Identifier and the county code.
Match
Foun
Search using state specific algorithm.
Match
Foun
No Match.
Search for a user defined LRS match.
Match Found
Yes
Yes
No
No
No
No
No
Recalculate NHS mileposts to align with HPMS values.
FAF4 Freight Traffic Assignment 2-3 August 31st, 2016
Table 2-1. LRS Alignment Codes
Code Description
0 LRS match was found; mileposts are aligned.
1 LRS match was found, overall route-length matches but the beginning and ending mileposts are different; mileposts were recalculated to align with the HPMS values.
3 No LRS match was found.
22 The HPMS route-length is shorter than the FAF; the beginning mileposts are the same, but HPMS ending milepost is less than the FAF ending milepost.
86 The HPMS route-length is shorter than the FAF; both the beginning and ending HPMS mileposts are less than the FAF mileposts.
90 The HPMS route-length is longer than the FAF; both the beginning and ending HPMS mileposts are less than the FAF mileposts.
106 The HPMS route-length is longer than the FAF; the beginning HPMS milepost is less than the beginning FAF milepost and the ending HPMS milepost is greater than the ending FAF milepost.
134 The HPMS route-length is shorter than the FAF; the ending mileposts are the same, but HPMS beginning milepost is greater than the FAF beginning milepost.
150 The HPMS route-length is shorter than the FAF; the beginning HPMS milepost is greater than the beginning FAF milepost, and the ending HPMS milepost is less than the ending FAF milepost.
166 The HPMS route-length is shorter than the FAF; both the beginning and ending HPMS mileposts are greater than the FAF mileposts.
170 The HPMS route-length is longer than the FAF; both the beginning and ending HPMS mileposts are greater than the FAF mileposts.
Note: By default, a tolerance of 0.5 mile is used when determining if two mileposts match, and a tolerance of 1 mile
is used when determining if two routes are of the same length.
2.2.2 Reassigning Mileposts
When a matching LRS route is found between the HPMS and FAF datasets, and the route has the
same overall length in both datasets but different beginning and ending mileposts, then MFAT
analysis tool will assume that these represent the same route but are using different points of
reference for their mileposts (i.e., State or County based). In these instances, the MFAT analysis
tool will reassign the beginning and ending mileposts of the FAF route to match with the HPMS
milepost values.
2.2.3 Recalibrating Mileposts
When the beginning or ending mileposts for an FAF route are reassigned to match the milepost
values of the HPMS dataset, the value of all the intermediate milepost breaks that may exist in
the route are recalculated as well. When being recalculated, the ratio between the intermediate
mileposts is maintained.
FAF4 Freight Traffic Assignment 2-4 August 31st, 2016
2.3 Quality Assurance Analysis
After completion of HPMS database loading to FAF network, visual inspection was conducted
by developing scale-based theme maps using the TransCAD GIS software. This approach is
very effective to identify the major discrepancies between adjacent links (i.e., significant drop of
average annual daily traffic, or AADT, between two adjacent highway links) or among various
functional classes. This approach also helps to identify any inherent anomalies with the HPMS
database. The purpose of the quality assurance subtask was to manually check the accuracy of
merged data. For example, if the difference in traffic volume from one link to the next were
greater than 20 percent, the original state traffic data available through the state website is
consulted to verify if the accurate value had been merged to the network. If the values compared
well with the state data, then the more common value for that link was used to ensure continuity
in the traffic volume. These abrupt changes could also result from the merging process where
aggregation was used. This is a smoothing process that served as a reasonableness check of the
traffic data merged with the network.
Freight demand modeling requires that there be a value for each link segment. Therefore, a
default lookup table data schema was developed to address the missing data. Table 2-2 shows
the type and number of lookup tables developed and the intended purpose of each. These default
lookup tables were used to fill the missing data elements where required for assignment. The
total number of missing links used to populate the relevant information using the lookup table
was less than 5 percent of total network coverage.
FAF4 Freight Traffic Assignment 2-5 August 31st, 2016
Table 2-2. FAF4 Network Missing Data Lookup Tables
Lookup Table Name Purpose
AADTLookup National average AADT grouped by state and county codes and functional classification. This table is used to populate missing AADT of the network table.
AADTLookUpPerState National average AADT grouped by state codes and functional classification. This table is used to populate missing AADT of the network table where the previous lookup table failed to do.
DFactorLookUp For missing network D-factor values.
FixFClassLookUp For missing functional classifications.
FreeWayFidLookUp Adjustment factor for freeway interchange density.
FreeWayFlcLookUp Adjustment factor for right shoulder lateral clearance; applies to freeway.
FreeWayFlwLookUp Adjustment factor for freeway lane width.
FreeWayFnLookUp Adjustment factor for number of lanes.
FreeWayRuralEtLookUp Rural equivalence table for SU, Comb, ST, DT, and TT.
FreeWayTempEtLookUp Equivalence table truck. This table is used only for peak hr factor (PHF) calculation.
FreeWayUrbanEtLookUp Urban equivalence table for SU, Comb, ST, DT, and TT.
KFactorLookUp For missing network K-factor values.
MultiLaneFaLookUp For multi-lane adjustment factor for access points.
SpeedLookUp For missing network speed values.
TruckLookUP For missing non-network truck, SU and Comb.
Note: Single unit (SU); Combination (Comb); Semi-trailer (ST); Double trailer (DT); Triple trailer (TT)
2.4 Summary of Freight Network Development
The outcome of this task was a routable FAF4 highway network loaded with 2012 traffic volume
and other HPMS-attributable information required for the development of subsequent link
parameters that are themselves required for freight assignment. Figure 2-2 illustrates the
combination truck volume on the FAF4 network developed using the HPMS 2012 database.
FA
F3 F
reig
ht T
raffic
Ana
lysis
2-6
A
ug
ust 3
1st ,2
016
Figure 2-2. HPMS 2012 Combination Truck Volume on FAF4 Network
FAF4 Freight Traffic Assignment 3-1 August 31st, 2016
CHAPTER 3: TRUCK PAYLOAD EQUIVALENCY FACTOR
3.1 Introduction
For freight transportation planning and highway deficiency analysis, it is important to know the
number of truck trips passing through a particular highway section between freight origins and
destinations. While States collect and maintain data on the number of trucks passing sections of
the highway network, there is currently no direct source of information on the number of truck
trips between origins and destinations. The CFS, which is a comprehensive nationwide freight
movement data source, provides information in terms of the tonnage and value of commodities
between destination pairs. Consequently, it is necessary to convert commodity volume into truck
trips for the purposes of assignment onto the highway network as part of the freight planning
process. This chapter describes procedures to convert the commodity flows measured in tons
into the equivalent number of trucks for the development of the truck O-D matrix, developed
during earlier version of FAF3 product.
3.2 Tonnage to Truck Payload Conversion Process
The FAF data do not provide an estimation of the Average Daily Truck Traffic (ADTT) used to
move freight between the shipping zones. The work flow diagram shown in Figure 3-1
illustrates a general overview of the process of estimating the AADT. The primary source of
information for developing the procedures for converting commodity flows in tons to truck trips
was the 2002 Vehicle Inventory and Use Survey (VIUS) database. The VIUS provides national
and state-level estimates of the total number of trucks by truck type. These data are gathered
through surveys of a sample of the motor carrier industry, and the survey is conducted every
five years as part of the U.S. Economic Census.
FAF4 Freight Traffic Analysis 3-2 August 31st , 2016
Figure 3-1. Truck Conversion Flow Diagram
The conversion of commodity flows from tons to truck trips involved five steps:
• Identifying the primary truck configurations and major truck body types (Table 3-1 and
Table 3-2).
• Allocating commodities to truck configurations used to transport these commodities
(Table 3-3). See Appendix B for commodity definitions.
• Estimating average payloads by vehicle group and body type.
• Converting the commodity tons into the equivalent number of trucks.
• Estimating the percent of empty truck trips.
Zone to Zone Distance
FAF3 Database
Truck Allocations (5 distance ranges)
• Less than 51 miles
• 051-100 miles
• 101-200 miles
• 201-500 miles
• More than 500 miles
Truck Equivalency
Factors
Empty Truck
Factors
Total ADTT truck traffic from zone-to-zone by
commodity
Merge zone-to-zone distance information with the FAF3 database.
Allocate freight tonnage to the five truck-types using allocation percentages based on five zone-to-zone distance ranges.
Convert freight tonnage to their equivalent truck traffic rates, expanding to 45 truck/body types.
Calculate total Average Daily Truck Traffic (ADTT) for each truck type including empty truck traffic.
Lookup Tables
FAF4 Freight Traffic Assignment 3-3 August 31st, 2016
Identifying Truck Configurations and Body Types
There are five primary truck configuration categories, as shown in Table 3-1.
Table 3-1. Truck Configurations
Group Abbreviation Description
1 SU Single Unit Trucks
2 TT Truck plus Trailer Combinations
3 CS Tractor plus Semitrailer Combinations
4 DBL Tractor plus Double Trailer Combinations
5 TPT Tractor plus Triple Trailer Combinations
Figure 3-2: Illustrative Example of Truck Configuration used in FAF
FAF4 Freight Traffic Analysis 3-4 August 31st , 2016
There are nine major truck-body types selected in order of decreasing percentage in the truck
fleet as shown in Table 3-2.
Table 3-2. Truck-Body Types
Body Truck Fleet Description
1 37.72% Dry Van
2 24.37% Flat Bed
3 14.73% Bulk
4 8.15% Reefer
5 7.97% Tank
6 2.12% Logging
7 1.7% Livestock
8 0.91% Automobile
9 2.33% Other
Figure 3-3: Illustrative Example of Major Body Type
FAF4 Freight Traffic Assignment 3-5 August 31st, 2016
Allocating Commodities to Truck Configurations
The allocation of the FAF O-D tonnages to each truck configuration and body type was done for
each type of commodity that these trucks carry. Separate allocations were done for each of five
distance ranges. This process ensured that tonnage was not assigned to a wrong truck
configuration and body type when the trip length was out of the typical operating range for
such trucks. The five distance ranges and allocation factors for each truck type are shown in
Table 3-3.
Table 3-3. Truck Allocation Factors
Minimum Range
(miles)
Maximum Range
(miles)
Single Unit
Truck Trailer
Combination Semitrailer
Combination Double
Combination Triple
0 50 0.793201 0.070139 0.130465 0.006179 0.0000167
51 100 0.577445 0.058172 0.344653 0.019608 0
101 200 0.313468 0.045762 0.565269 0.074434 0.000452
201 500 0.142467 0.027288 0.751628 0.075218 0.002031
501 10000 0.06466 0.0149 0.879727 0.034143 0.004225
Estimating Average Payloads
Development of truck equivalent factors was carried out in a two-step process. First, the mean
payloads by truck type, body type, and commodity type were established using VIUS 2002
database and a study prepared by Battelle for FHWA titled: Development of Truck Payload
Equivalent (TEP) Factor, June 15, 2007.
Second, the mean payloads were applied to the percent allocations by body type to convert the
commodity volume in tons to an equivalent number of trucks. The formulation of the conversion
from commodity tons to equivalent number of trucks is outlined in Table 3-4.
Table 3-4. Definition of the Conversion Factor Equations
i Commodity index (1, 2, … 43)
j Truck configuration group index (1, 2, … 5)
k Truck body-type index (1, 2, … 9)
Xi Tonnage of commodity (i)
Yj Number of trucks in truck configuration group (j)
βijk Fraction of commodity (i) moved by truck type (j) with body type (k)
ω ijk Mean payload of truck type j with body type k transporting commodity i
Xi βijk The tonnage of commodity (Xi) carried by truck type (j) and body type (k)
Xi βijk / ωijk Number of trucks of type (j) and body type (k) required to move (Xi βijk) tons
FAF4 Freight Traffic Analysis 3-6 August 31st , 2016
The number of trucks of type (Yj=1) used to move (Xi βijk) tons of commodity (Xi) by all body
types is given by Equation 3-1.
=
==
=++++=9
1 1
1
19
19
13
13
12
12
11
11
1.........
k
k ki
kii
i
ii
i
i
i
ii
i
ii
j
XXXXXY
(3-1)
Similarly, the number of trucks of type (Yj=2) used to move (Xi βijk) tons of commodity (Xi) by
all body types is given by Equation 3-2.
=
==
=++++=9
1 2
29
29
29
23
23
22
22
21
21
2.........
k
k ki
ii
i
ii
i
ii
i
ii
i
ii
j
XXXXXY
(3-2)
Thus, the number of trucks of type (Yj) needed to move (Xi βijk) tons of commodity (Xi) by all
body types can be expressed in Equation 3-3.
=
=
=
=
==9
1
9
1
k
k ijk
ijk
i
ijk
ijkik
kj X
XY
(3-3)
Finally, the total number of trucks assigned to move commodity (Xi) and the total number of
trucks assigned to move all commodities are given by Equations 3-4 and 3-5.
=
=
=
=
=
=
=5
1
9
1
5
1
j
j ijk
ijkk
ki
j
jj XY
(3-4)
=
=
=
=
=
=
=5
1
9
1
50
1
_j
j ijk
ijkk
k
i
iiXTrucksTotal
(3-5)
The truck equivalency factor is therefore given by Equation 3-6.
ijk
ijk
ijkTEF =
(3-6)
The truck equivalency factor converts tons of a commodity shipped to its equivalent number of
trucks. This is a three-dimensional factor that is a function of truck configuration, body type,
and commodity. A complete listing of the truck equivalency factors for all truck configurations,
body types, and commodities is provided in Appendix A.
Converting Tonnage to Equivalent Trucks
FAF4 Freight Traffic Assignment 3-7 August 31st, 2016
The truck equivalency factors were applied to the commodity flows allocated for each truck
configuration to create a disaggregated data set describing the total number of loaded trucks
required to move the freight between the FAF zones. The loaded truck traffic estimates were
disaggregated by commodity type, truck configuration, and body type.
Estimating Empty Trucks
The empty truck percentage for a given truck and body type configuration must be added to
estimate the total long distance truck population. The number of empty trucks was estimated by
analyzing the percent of miles that a truck is empty in VIUS, to determine the percent of trucks
operated in empty conditions. However, it was also found that more than 50 percent of trucks in
each vehicle group operate more than half capacity, but less than full. Therefore, for analysis
purposes, the contribution of empty trucks is further reduced by an additional 50 percent, as
reported in the VIUS data. The empty truck factors are shown in Table 3-5.
Table 3-5. Empty Truck Factors
Body Type Single Unit
Truck Trailer
Combination Semitrailer
Combination Double
Combination Triple
Domestic and Sea-Port Shipping
Auto 0 0 0.14 0 0
Livestock 0 0 0.2 0.16 0
Bulk 0.21 0.14 0.2 0.2 0.06
Flatbed 0.14 0.16 0.16 0.2 0.03
Tank 0.17 0.18 0.2 0.2 0
Day Van 0.12 0.07 0.1 0.04 0.07
Reefer 0.1 0.08 0.09 0.13 0
Logging 0.24 0.21 0.2 0.13 0
Other 0.1 0.06 0.25 0 0
Land Border Shipping
Auto 0 0 0.28 0 0
Livestock 0 0 0.4 0.32 0
Bulk 0.42 0.28 0.4 0.4 0.12
Flatbed 0.28 0.32 0.32 0.4 0.06
Tank 0.34 0.36 0.4 0.4 0
Dry Van 0.24 0.14 0.2 0.08 0.14
Reefer 0.2 0.16 0.18 0.26 0
Logging 0.48 0.42 0.4 0.26 0
Other 0.2 0.12 0.5 0 0
FAF4 Freight Traffic Analysis 3-8 August 31st , 2016
3.2.1 Truck Conversion – Example
The following paragraphs describe an example of the process used to determine the annual truck
traffic between FAF border zones for agricultural commodities. In the first step of the analysis,
zone distance information is merged with the raw FAF database as shown in Table 3-6. The
zone-zone distance information is provided by a lookup table.
Table 3-6. FAF Data with Zone-Distance
Data Item Value Unit
Origin FAF Zone 49
Destination FAF Zone 41
Commodity 3 – Agricultural
Tonnage 1519.15 Kilotons
Value 1373.96 Millions
Annual Truck Traffic Trucks
Distance 171.6 Miles
The next step allocates the tonnage information between the FAF zones to the five truck types
shown in Table 3-7. The tonnage for each truck type is determined using the allocation factors
for the appropriate zone-distance range provided by Table 3-3.
Table 3-7. Tonnage Allocated to the Five Truck Types
Truck Type Allocation
Factors1 Value Unit
Single Unit 0.313468 476.20 Kilotons
Truck Trailer 0.045762 69.52 Kilotons
Combination Semitrailer 0.565269 858.73 Kilotons
Combination Double 0.074434 113.08 Kilotons
Combination Triple 0.000452 0.69 Kilotons
Next, the freight tonnage assigned to each truck type is converted into their equivalent annual
truck traffic values as shown in Table 3-8. The annual traffic values for each truck type are
1 Allocation factors are from Table 3-3 for distance range from 101 to 200 miles.
FAF4 Freight Traffic Assignment 3-9 August 31st, 2016
expanded to nine body styles. The annual traffic values are determined using the truck
equivalency factors for each commodity provided by Appendix A.
Table 3-8. Annual Truck Traffic, Loaded Trucks
Single Unit
Truck Trailer
Tractor Semitrailer
Tractor Double
Tractor Triple
Auto 0 0 0 0 0
Livestock 0 0 429.36 0 0
Bulk 5090.62 1142.21 5461.51 410.46 0
Flatbed 9433.60 3765.88 9789.49 3023.65 0
Tank 485.73 29.89 532.41 64.45 0
Dry Van 4742.99 670.86 3804.16 241.98 0
Reefer 4485.85 0 12185.35 0 0
Logging 0 0 0 0 0
Other 700.02 387.22 0 0 0
The total annual truck traffic only accounts for loaded trucks; as noted above, however, some
portion of the actual truck traffic consists of empty trucks traveling between loads. To account
for these empty trucks, the annual truck traffic must be adjusted using the empty truck factors
provided in Table 3-5. The final total annual truck traffic is shown in Table 3-9.
Table 3-9. Annual Truck Traffic, Loaded and Empty Trucks
Single Unit
Truck Trailer
Tractor Semitrailer
Tractor Double
Tractor Triple
Auto 0 0 0 0 0
Livestock 0 0 601.11 0 0
Bulk 7228.68 1462.03 7646.11 574.65 0
Flatbed 12075.02 4970.97 12922.13 4233.12 0
Tank 650.88 40.66 745.37 90.23 0
Dry Van 5881.32 764.79 4564.99 261.34 0
Reefer 5383.02 0 14378.71 0 0
Logging 0 0 0 0 0
Other 840.02 433.69 0 0 0
The next step is to consolidate the total annual truck traffic for all the body styles together for
each truck type, as shown in Table 3-10.
FAF4 Freight Traffic Analysis 3-10 August 31st , 2016
Table 3-10. Annual Truck Traffic by Truck Type
Truck Type Annual Traffic
Unit
Single Unit 32059 Trucks
Truck Trailer 7672 Trucks
Combination Semitrailer 40858 Trucks
Combination Double 5159 Trucks
Combination Triple 0 Trucks
The final step is to sum the annual truck traffic for all the truck types to determine the overall
annual truck traffic between the FAF zones. The value is then inserted back into the original
table, as shown in Table 3-11.
Table 3-11. FAF Data with Annual Truck Traffic
Data Item Value Unit
Origin FAF Zone 49
Destination FAF Zone 41
Commodity 3 – Agricultural
Tonnage 1519.15 Kilotons
Value 1373.96 Millions
Annual Truck Traffic 85748 Trucks
Distance 171.6 Miles
The example illustrated above has determined the average number of loaded and empty trucks
used to move agricultural freight between FAF zones 49 and 41. A summary of the estimated
number of trucks and average load weight is provided in Table 3-12. The daily traffic is
estimated by dividing the annual value by 365.
Table 3-12. Annual Truck Traffic Summary
Total Freight (tons)
Total Trucks Loaded Trucks
Empty Trucks
Tons per Truck
1519150 85748 66877 18872 22.7
3.3 Dynamic Virtual OD Allocation
The allocation of FAF Origin/Destination (O-D) data from 132 FAF traffic analysis zones to
demand responsive virtual analysis zones was carried out for domestic and international trips
separately. The work flow diagram in Figure 3-4 illustrates O-D disaggregation process.
FAF4 Freight Traffic Assignment 3-11 August 31st, 2016
Figure 3-4. Virtual Disaggregation Flow Diagram
For domestic trips, a demand responsive virtual O-D disaggregation technique and associated
software was developed using the Maks Inc. internal research and development (IR&D). The
process is interactive and defines nodes in a network that are used as virtual zones that have no
relationship to the FAF zone, count, or zip code centroids. The nodes allow the FAF O-D matrix
to distribute flows on the U.S. highway network using off-the-shelf traffic assignment software,
so that assigned flows are comparable with the link specific truck flows established from HPMS
and state truck databases. The computer model developed under the MFAT interface
dynamically adjusted the location of each node as well as its share of freight flow associated,
using a set of constraints that are a function of:
• Geographical location of truck related warehouse and distribution centers (18,000)
• Adjacent link traffic volumes for candidate virtual nodes
• Highway functional classes connected to the virtual node
• Freight intermodal geo-locations.
For international O-D pairs, the process was static where an adjacent network node of each
border crossing or port geo-location was a virtual O-D zone. The virtual O-D zone for
Total O-D Values for
Freight Volume, Dollar Value, and
Truck Traffic (FAFzone-to-FAFzone)
Node Specific Disaggregation Factors
Total O-D Values for
Freight Volume, Dollar Value, and
Truck Traffic (FAFnode-to-FAFnode)
Domestic disaggregation: This process is dynamic and demand responsive. Virtual O-D centroids are created as needed to uniformly distribute the flow on the entire FAF network. For FAF, a total of 5000+ domestic virtual centroids were dynamically generated to accomplish an optimal distribution of FAF ODs flow: decision inputs; (1) truck distribution and warehouse locations cluster (2) HPMS combination truck VMT distribution.
International disaggregation: This is a static process, where each border-crossing and each port location is assigned O-D nodes. Decision input; (1) annual border truck movements (2) truck movements to/from ports; (3) HPMS link specific truck counts. (see note 1)
Lookup Tables
FAF4 Freight Traffic Analysis 3-12 August 31st , 2016
international movement was further divided into cross-border movements (Canada and Mexico)
and port movements. Cross-border movements were defined as O-D pairs originating from a
FAF zone adjacent to Canada or Mexico and destined to another FAF zone, and vice versa.
Similarly, for ports, the O-D pairs originated from, or were headed toward, a FAF zone
containing one or more ports or gateways. Prior to assignment, domestic and international FAF
O-Ds were disaggregated to virtual loading and unloading points by distributing the freight
proportionately to virtual nodes using Equation 3-7.
)/()()( )()( sscssc EETT =
(3-7)
Where:
)()( scT Freight trucks/tons produced or attracted in virtual node c(s)
sT )( Freight truck/tons produced or attracted in FAF zone (s), which comprises a set of virtual nodes
)(scE The percent share of freight activity by virtual node c(s) for FAF zone (s)
sE The total freight activity within the FAF zone (s)
FAF4 Freight Traffic Assignment 3-13 August 31st, 2016
This page intentionally left blank
FAF4 Freight Traffic Assignment 4-1 August 31st, 2016
CHAPTER 4: FREIGHT TRUCK ASSIGNMENT AND CALIBRATION
4.1 Introduction
This chapter describes the processes of network preparation for freight demand modeling and
associated freight assignment procedures and calibration.
4.2 Network Preparation
Network preparation is required to define and populate the attributes of the highway links that
are necessary for freight assignment. These include travel impedance functions, free flow
speeds, and link capacities. These attributes determine the capacity-related performance
characteristics of each link.
4.2.1 Impedance Function
Travel time on a given link was estimated by dividing its length by the travel speed on that link.
Therefore, travel time for a given link changes as the travel speed fluctuates. The speed of a
given link can also be affected by roadway type or other conditions, as indicated earlier.
Consequently, this reduced speed would introduce a penalty to the initial link travel time. Thus
the impedance function of a link can be mathematically expressed as:
jj
j
j
j frS
LT += (4-1)
where =jT the link free flow travel time
=jL the length of link j in miles
=jS the free flow speed on link j in miles-per-hour
=jr travel time adjustment factors, which is a function of the number of lanes, urban
bypass, traffic restriction, truck route designation, tolls, and the link reliability
=jf the penalty.
4.2.2 Free Flow Travel Speed
The free flow speed (FFS) of a link can be defined as the average speed of a vehicle on that link,
measured under low-volume conditions when drivers tend to drive at their desired speed and are
not constrained by control delay. The FFS for the FAF network link was determined by the
following equations from the NCHRP Report 387, “Planning Techniques to Estimate Speeds and
Service Volumes for Planning Applications”:
FFS = (0.88* Link Speed Limit + 14); for speed limits > 50 mph (4-2)
FFS = (0.79 * Link Speed Limit + 12); for speed limits < = 50 mph (4-3)
The link speed limit was obtained from HPMS data. The FAF network link with missing speed
limit values was assumed based on the following four physical characteristics of highway
segments:
FAF4 Freight Traffic Analysis 4-2 August 31st , 2016
1. Access control for the given highway segment
2. Median type
3. Quality of the roadway pavement (paved vs. unpaved)
4. Classification of the highway segment within or outside of an urban boundary.
Assumed speed limits for the combinations of these four characteristics are given in Table 4-1.
Table 4-1. Speed Limits (mph) for Missing HPMS Speed Data
Functional Class
Pavement Type
Fully Controlled Partially Controlled Uncontrolled
With Median
Without Median
With Median
Without Median
With Median
Without Median
Rural Paved 65 60 65 55 65 55
Unpaved 25 15 20 15 15 10
Urban Paved 55 45 45 35 35 25
Unpaved 15 10 10 10 10 10
4.2.3 Travel Impedance
The total impedance of a selected highway path (i.e., truck route), denoted as T, can be expressed
mathematically as the sum of all link impedances (i.e.,jT ‘s). Assuming there are n links on the
selected path, the impedance of the selected path is then equal to:
==
n
j jTT1
(4-4)
The adjustment factors as denoted by jr in Equation 4-1 were estimated based on several road
characteristics or criteria. The total adjustment factor, r, is a mathematical product of all
adjustment factors that meet the following criteria:
Number of lanes: When there are 4 or more lanes of traffic in both directions, the link travel
time is reduced by 2 percent (r = 0.98). It is assumed that a trucker most likely prefer a 4-lane
highway vs a 2-lane highway if he has the choice to take either route.
Urban bypass: When the given link is on an urban bypass, its travel time is increased by
4 percent (r = 1.04). It is assumed that a trucker most likely will take a shorter route through the
urban area unless it is forced to do so or to avoid congestion.
Truck restrictions: When the link has known truck restrictions, the link travel time is increased
by 60 percent (r = 1.6). For highway segments that prohibit trucks carrying hazardous materials,
the travel time of the link is increased by 5 percent (r = 1.05). This was done to allow a trucker to
deliver the products when it has no alternate route to drop-off the goods.
Truck route designation: If a link is on a federal or state designated truck route, the given
link’s travel time is reduced by 1.5 percent (r = 0.985).
FAF4 Freight Traffic Assignment 4-3 August 31st, 2016
Tolls: When the given link is a toll road or bridge, its travel time is increased by 2.5 percent
(r =1.025).
Reliability: This factor is based on the assumption that travel time on links with interstate
designations are more predictable to the drivers than the other links. If the given link is on the
rural interstate, then the travel time is reduced by 10 percent (r = 0.9). For an urban interstate,
travel time is reduced by 5 percent (r = 0.95).
For example, assume that a FAF link is a multi-lane (4 or more) urban bypass with an urban
interstate designation. The link is also part of a toll road and part of a federally designated truck
route. The resultant adjustment factor of r for free flow travel time for this particular link can be
estimated as:
Adjusted r = rnumber of lanes x rurban bypass x rtruck route x rtolls x rurban interstate (4-5)
Adjusted r = 0.98 x 1.04 x 0.985 x 1.025 x 0.95 = 0.978 (4-6)
The final adjustment of the travel impedance cost was done during the network calibration
process under the FAF assignment. The network calibration was done by adjusting the link
impedance cost, capacity, or both, so that the link flow was as close as possible to the baseline
traffic. The baseline is the truck traffic data on the links that are derived from the state’s actual
truck classification counts. The size of the network does not allow baseline truck flow to be
balanced with assigned truck trip (using the FAF O-D freight matrix) for each link. However,
efforts were made to adjust the nation’s truck flow pattern for the major route.
Travel impedance cost is not a simple function of travel time only, and therefore caution must be
taken to convert the travel cost to equivalent speed.
4.2.4 Link Capacity
The capacity of a given link can be defined as a maximum sustainable flow rate at which
vehicles or persons reasonably can be expected to traverse a point or uniform segment of a lane
or roadway during a specified time period under given roadway, geometric, traffic,
environmental, and control conditions; this capacity is usually expressed as vehicles per hour,
passenger cars per hour, or persons per hour.
The link base capacity of the FAF network is estimated using the HCM 2000 capacity estimation
procedures. The general procedures for estimating highway capacity for 2-lane facilities,
multilane facilities—divided and undivided and freeways by design are included in Appendix N
of the HPMS Manual [11].
The capacity value reported in an HPMS sample section is for one direction on multilane
facilities and for both directions on 2- or 3-lane facilities. Capacity is expressed as maximum
service flow rate at Level of Service (LOS) E in passenger cars per hour direction (one direction
for multilane and both directions for 2 or 3 lane). The HPMS capacity is also called “practical
capacity,” because the reported capacity has been reduced to account for the presence of heavy
vehicles.
FAF4 Freight Traffic Analysis 4-4 August 31st , 2016
+= •
i
i
iii
C
x
tt 1
Since the FAF4 truck assignment is based on average annual daily truck traffic (AADTT) virtual
O-D matrices, adjustments to capacity values were required to simulate the 24-hour equivalent
capacity for a given link. This was done by expanding the capacity using the links D
(directional) and K (traffic factor). This capacity is referred to as “model capacity”, to be used as
freight assignment input. Typically, an assignment model is carried out for an hourly trip that is
estimated by multiplying the AADT by the D and K factors. To simulate the similar capacity
constraint scenario, the FAF4 AADTT virtual O-D matrix was kept in terms of a daily average
trip, and the capacity was expanded by dividing the capacity (volume/hour/lane) by the D and K
factors and the applicable numbers of lanes. The result (daily average capacity, expressed as
volume/day/link) was then used as the model capacity for subsequent capacity constraint
assignment. The primary objective of the model capacity to calibrate the assignment flows in
conjunction with the alpha and beta calibration factors.
4.3 Assignment Algorithm and Calibration
Traffic assignment models are used to estimate the flow of traffic on a network to establish the
traffic flow patterns and analyze congestion points. Intra-zonal truck movements (local traffic)
are not included in the assignment process. Even though the highway capacity analysis is
focused on a detailed assessment of freight flows and impacts on the highway system, highway
bottlenecks are highly dependent on the interaction of total truck and passenger car traffic.
Therefore, passenger traffic was a key consideration in the assignment process. In this regard,
freight flows were assigned with passenger traffic and non-freight (local) trucks pre-loaded on
the freight analysis network. Detailed demand analysis of passenger traffic was not performed as
part of the study. Rather, current passenger traffic counts and future growth rates as included in
the HPMS database were used. The assignment model and procedure applied to the FAF4 freight
demand modeling are described in the following sections.
4.3.1 Assignment Algorithm
The Stochastic User Equilibrium (SUE) traffic assignment procedure in TransCAD 7.0 with user
defined volume delay function (VDF) was used. This assignment is constrained by the highway
network’s current capacity. The SUE is a generalization of user equilibrium (a modified
capacity constraint approach) that assumes travelers may not have perfect information
concerning network congestion and delay and/or perceive travel costs in different ways;
therefore, they may change the travel pattern by taking alternate routes as the network (or a
specific link of a network) gets congested. The selected VDF for FAF4 assignment is the Bureau
of Public Roads (BPR) function. A detailed description of this function can be found in
Chapter 9 of TransCAD user guide for Travel Demand Modeling with TransCAD. The general
form of the BPR function is shown in Equation 4-7.
(4-7)
FAF4 Freight Traffic Assignment 4-5 August 31st, 2016
Where
t = Congested travel time
ti = Free flow travel time on link i
Ci = Capacity of link i
xi = Flow on link i
αi = Calibration constant
βi = Calibration constant.
The analysis starts with a default calibration constant as a function of road class and then
adjusted to divert or induced the truck flow that is more consistent with the ground count flow.
For earlier version of FAF, Maks Inc. has successfully used this procedure. This approach
reasonably forecast the link traffic volumes on two parallel highways with the same route
distance but different degrees of congestion. An example is US-99 in and I-5 in Los Angeles
County, California. The all or nothing (AON) or non-capacity traffic assignment without a
passenger traffic pre-load will assign most of the truck traffic to I-5, but in reality, a large portion
of truck traffic also uses US-99. Figure 4-1 illustrates the significant difference of these two
methods of freight assignment.
Figure 4-1. Comparison of AON and SUE Truck Traffic Assignment
4.3.2 Freight Assignment Calibration
The purpose of this step was to calibrate the 2012 base year demand flow so that the assigned
truck VMT closely match the HPMS truck VMT in the network as closely as possible. The
calibration ensured that differences or discrepancies between the actual traffic flows and those
estimated from freight O-D data were minimized. This was an iterative process that involved
comparing assigned demand truck traffic flow with baseline flows. The output of this task was a
calibrated baseline AADTT O-D matrix for the entire freight analysis network.
AON Method SUE Method
FAF4 Freight Traffic Analysis 4-6 August 31st , 2016
The challenge in calibrating network assignments is that the tonnage to truck freight data and the
HPMS truck data, which form the baseline traffic, were derived from different sources. The
baseline HPMS truck data were derived from states with varying data quality and data collection
methods, and freight flow data were derived by converting the FAF4 tonnage data using a set of
tons to truck equivalent factors based on several assumptions and expert knowledge.
Assumptions were made about the truck capacity and types of commodities carried. Reconciling
these flows or minimizing the differences is a major challenge.
The calibration effort involved adjusting the link travel time or capacity or the calibration
constant (αi and βi) of the network or both so that the assigned link flows were as close as
possible to the baseline flows. The size of the network made it impossible to balance the flows
link by link. However, efforts were made to balance the assigned flows to the baseline link
flows as closely as possible for the major route (mostly interstate and principal arterials).
Once the network was calibrated, the forecast truck trip matrices for 2045 were assigned to the
network using base case the 2012 calibrated network. This was done to ensure the consistency
with the base year (2012), with an assumption that route choice behavior will remain the same
between 2012 and 2045 scenario, and with constant network (no improvement) during the
analysis period.
Figure 4-2 and Figure 4-3 illustrate the FAF4 base year 2012 flow, and FAF4 2045 flow
respectively.
The next major step was to assess reliability of the assignments using a set of statistical
measures. The outputs of the assignment process and the HPMS truck volumes were used in the
assignment reliability checks presented in Chapter 6.
FA
F4 F
reig
ht T
raffic
Assig
nm
ent
4-7
A
ug
ust 3
1st , 2
016
Figure 4-2. Base Year 2012 FAF4 Truck Flow on FAF4 Highway Network
FA
F4 F
reig
ht T
raffic
Assig
nm
ent
4-8
A
ug
ust 3
1st 2
3
, 201
6
Figure 4-3. Year 2040 FAF4 Truck Flow on FAF4 Highway Network
FAF4 Freight Traffic Assignment 5-9 August 31st , 2016
CHAPTER 5: ASSIGNMENT RELIABILITY CHECK
5.1 Introduction
The purpose of the assignment reliability analysis is to address the reliability of those data
components that have a direct impact on FAF assignment output as well as their sensitivity on
predicted FAF truck volumes on the highway network. Though O-D is the most integral part of
the assignment process, the reliability did not make any attempt to quantify the errors that may
exist in the source’s O-D database. It should be acknowledged that any underlying fatal data
errors on the O-D can significantly influence the assignment outcomes. The analysis assumes
FAF O-D may have some inherent errors independent of the 3-step freight demand modeling.
The general analytical approach adopted for this analysis followed the guidelines as outlined the
FHWA Manual Titled “Travel Model Validation and Reasonableness Checking Manual
Second Edition”, September 24, 2010 as appropriate for the freight demand modeling and
complemented with other statistical criteria that best fit the assignment reliability objective. A
brief review of the guideline applicable to national level freight assignment is summarized in the
following paragraphs.
In travel model validation, assignment is the last step of any modeling process of the four-step
process, which consists of production, distribution, model choice, and assignment. One
important part of the modeling process is assignment validation, which validates both the
assignment process and the entire modeling process. This validation is obtained by data
procured from independent validation data such as traffic counts, independent traffic speed, and
travel time studies. However, because there is a plethora of independent validation data, trip
assignments are used as the main mode of validation for replicating observed travel using a
travel model. For FAF assignment, the validation process only deals with the assignment as
constrained by the FAF OD. Given the limitations, the reliability analysis mostly focused on
Vehicle-Miles of Travel (VMT) by functional classification.
FAF4 Freight Traffic Assignment 5-10 August 31st , 2016
Table 2: Assignment Reliability Test Criteria
CHECKS TEST QUANTITATIVE/QUALITATIVE
VMT • Regional- indicates how reasonable the
overall level of travel is
• facility- indicate issues with the operation
of assignment procedures
• geographic- uncover geographic bias in
modeling group
Quantitative
Traffic volume-related Comparison between modeled and observed traffic
volumes on link-by-link basis
Qualitative
Range Finding and correcting network/assignment errors Qualitative
Route choice Comparison between modeled and observed paths
for selected trips based on the traffic flow pattern
as described by the ground truth traffic
Qualitative
Localized sensitivity Key network elements are modified and
assignment results for changes and reaction to
network elements
Qualitative
5.1.1 VMT Checks
The VMT comparison as shown in the following table by functional class, highway
administrative class (NHS Vs Non-NHS) as well as by major corridors. Based on the VMT
estimates following observations can be made:
• On average the FAF estimated VMT is less than the HPMS 2012 Total truck traffic
reported VMT
• I80, I65and I35 have reported higher VMT than average of all top 14 corridor VMT as
reported by HPMS data
FAF4 Freight Traffic Assignment 5-11 August 31st , 2016
Item Road Type HPMS AADTT
HPMS
Combination
Trucks FAF Trucks
Interstate 175,088,024 140,175,041 174,885,633
Freeway/Expressway 36,295,536 16,976,058 4,384,156
Principal Arterial 62,908,167 23,943,642 5,421,921
Minor Arterial 9,096,422 3,305,615 370,576
Other 1,026,470 324,786 57,672
Interstate 123,707,723 81,722,194 73,661,243
Principal Arterial 10,548,087 6,594,601 4,576,524
Minor Arterial 95,043,148 58,488,372 22,518,896
Major Colletor 45,938,833 23,255,436 5,995,804
Other 15,239,485 6,217,193 1,584,276
NHS 451,709,396 307,579,503 281,556,745
Non-NHS 124,677,707 53,614,666 12,017,899
NHS 503,016,118 327,376,743 285,753,224
Non-NHS 73,370,985 33,817,426 7,821,418
Restricted Truck
Route
Link with Truck
Restriction 2,468,193 822,475 0
I-80 21,137,972 17,370,441 30,552,563
I-5 13,546,294 9,595,687 8,758,200
I-70 11,961,674 9,928,935 12,009,691
I-95 14,340,986 9,925,333 9,694,899
I-10 21,387,367 15,202,058 15,533,823
I-40 19,861,556 15,594,825 15,741,038
I-65 6,405,421 5,345,201 7,736,066
I-94 8,087,075 6,148,139 6,598,457
I-45 2,995,065 2,322,254 1,413,355
I-75 15,886,306 12,571,459 11,285,030
I-81 7,331,968 5,908,157 6,538,756
I-77 4,133,302 3,400,815 3,049,074
I-20 11,708,007 9,249,158 8,790,105
I-35 9,632,790 7,711,532 11,567,063
Daily VMT
Urban
Rural
NHS Post MAP-21
NHS-Map 21
Corr
idor
FAF4 Freight Traffic Assignment 5-12 August 31st , 2016
5.1.2 Co-efficient of Variation
Higher the functional class lower the co-efficient of variation. This is true across the HPMS as
well as the FAF assignment.
CV
Item Road Type HPMS AADTT
HPMS Combination
Trucks FAF Trucks
Urban
Interstate 1.00 0.73 0.75
Freeway/Expressway 1.03 1.21 2.80
Principal Arterial 1.11 1.45 4.07
Minor Arterial 1.26 1.67 7.19
Other 1.54 1.94 6.14
Rural
Interstate 0.66 0.75 0.82
Principal Arterial 1.07 1.19 2.22
Minor Arterial 1.15 1.37 3.50
Major Colletor 1.15 1.33 4.11
Other 1.73 2.06 5.60
NHS Post MAP-21
NHS 1.22 1.35 1.70
Non-NHS 1.39 1.62 5.28
NHS-Map 21
NHS 1.43 1.65 2.19
Non-NHS 1.45 1.73 5.92
Restricted Truck Route Link with Truck Restriction 1.19 1.25 0.00
Co
rrid
or
I-80 0.67 0.73 0.70
I-5 0.50 0.58 0.56
I-70 0.64 0.65 0.39
I-95 0.61 0.59 0.61
I-10 0.64 0.58 0.59
I-40 0.45 0.56 0.55
I-65 0.81 0.85 0.35
I-94 0.76 0.75 0.68
I-45 0.38 0.42 0.57
I-75 0.50 0.55 0.57
I-81 0.40 0.45 0.38
I-77 0.38 0.41 0.35
I-20 0.51 0.52 0.42
I-35 0.68 0.70 0.62
FAF4 Freight Traffic Assignment 5-13 August 31st , 2016
5.1.3 Evaluation of the Network Assignment Results with Traffic Counts Data
5.1.4 Model RMSE Checks
Assignment Maximum Flow
change
Relative Gap RMSE %RSME
FAF 2012 35 0.00008156 0.60197228 0.14415599
FAF 2045 93 0.00009950 2.26527201 0.20743006
5.1.5 Scatter Plot Checks
Please see attached
Urban Interstate Rural Interstate NHS-Pre MAP21 NHS-Post MAP21 All System
HPMS Total Trucks 173,422,681 123,523,337 449,275,781 500,147,712 572,172,420
HPMS Combo Trucks 140,175,041 81,722,194 307,579,503 327,376,743 361,214,985
FAF 174,885,633 73,661,243 281,556,743 285,753,224 293,575,534
Change Of Ground Count Total Links Total Length IS Count IS Length Count Length
Total Length 670,427 446,142 100,003 47,436 44292 15527 442284 225787
Link Count Length Link Count Length Link Count Length Link Count Length
1-500 148937 11207 100 324 2167 561 55875 23287
501-1000 63925 29614 183 23 1419 432 40008 14622
1001-1500 31502 11802 119 24 1519 387 24084 8053
1501-2000 16612 5684 28 5 1701 466 13277 4274
2001-2500 8867 3093 33 15 1373 407 7524 2407
2501-3000 5168 1687 46 4.5 1071 265 4332 1357
>3000 1487 4259 507 68 6157 1560 13424 3745
% Total Links % Total Length % Link Count % Length %Link Count %Length Link Count Length
1-500 22.22 2.51 0.10 0.68 4.89 3.61 12.63 10.31
501-1000 9.53 6.64 0.18 0.05 3.20 2.78 9.05 6.48
1001-1500 4.70 2.65 0.12 0.05 3.43 2.49 5.45 3.57
1501-2000 2.48 1.27 0.03 0.01 3.84 3.00 3.00 1.89
2001-2500 1.32 0.69 0.03 0.03 3.10 2.62 1.70 1.07
2501-3000 0.77 0.38 0.05 0.01 2.42 1.71 0.98 0.60
>3000 0.22 0.95 0.51 0.14 13.90 10.05 3.04 1.66
VMT (2012)
AADTT range with FAF=0
Total Interstate Primary
NHS
NHS
AADTT range with FAF=0
Total Interstate Primary
FAF4 Freight Traffic Assignment 5-14 August 31st , 2016
FAF4 Freight Traffic Assignment 5-15 August 31st , 2016
FAF4 Freight Traffic Assignment 5-16 August 31st , 2016
This page intentionally left blank
FAF4 Freight Traffic Assignment 6-1 August 31st , 2016
CHAPTER 6: CONCLUSIONS
The primary objective of the highway freight modeling is to develop a policy tool for analyzing
potential freight-related policy and examining the sufficiency of capacity of the transportation
system in meeting forecast freight demand. Developing a framework for policy analysis relating
to the highway capacity for freight transportation is multi-dimensional and challenging. The
U.S. freight system is complex and diverse in terms of the spatial and temporal distribution of
freight generation activities and movement.
The critical elements of the national-level freight transportation modeling process include the
establishment of the network and freight data preparation. Procedures for converting commodity
flows into truck trips are not well developed. Inconsistencies in traffic data collection and
reporting formats among states pose challenges in developing a comprehensive baseline truck
traffic data base for national-level freight analysis.
The network assignment results are evaluated for the purpose of assessing any issues with the
results in comparison with other sources. A comparison of pre and post-improvement
assignment scenario shows encouraging improvement when measured against the traffic counts
and VMT distribution, as well as RMSE test.
The macro level freight allocation also contributes to assignment issues that may affect certain
segments more than others, such as rural and urban areas. The FAF freight traffic assignment is
the last step of a typical four-step freight demand modeling: freight generation within a set of
defined geographic areas, freight distribution, mode choices, and freight network assignment.
CV analysis and scattered plot of estimated verses observed trucks were developed by rural
interstate, rural principle arterial, urban interstate, urban freeway/expressway, and urban
principle arterial. In addition to this, statistical measures such as R-squared and RMSE were also
estimated for the final assignment result. The FAF database is composed of mostly long distance
freight and consequently, does not take into consideration the local truck traffic found in urban
areas. Therefore, there is more relationship in rural areas and less relationship in urban areas,
regardless of disaggregation. The more disaggregation that exists in a particular area, the more
improvement occurs. This is evident in the CV and scatterplots comparison.
FAF4 Freight Traffic Assignment 6-2 August 31st , 2016
This page intentionally left blank
FAF3 Freight Traffic Assignment August 31st, 2016
Appendix A
Truck Equivalency Factors
FAF4 Freight Traffic Assignment A-1 August 31st , 2016
Truck Equivalency Factors – Single Unit (SU)
Commodity Auto Livestock Bulk Flatbed Tank Day Van Reefer Logging Other
1 0 0 0.0066 0.04922 0.00111 0.00419 0.00173 0 0
2 0 0 0.02675 0.0086 0.00103 0.00032 0.00003 0 0.00003
3 0 0 0.01069 0.01981 0.00102 0.00996 0.00942 0 0.00147
4 0 0 0.01463 0.02657 0.00562 0.00334 0.00137 0 0.00034
5 0 0 0.00004 0.00089 0 0.03835 0.04837 0 0.00033
6 0 0 0 0.00025 0 0.15767 0.00216 0 0.00011
7 0 0 0.00001 0.00032 0.00073 0.02096 0.02048 0 0.02192
8 0 0 0 0.00002 0 0.02133 0.00286 0 0.02956
9 0 0 0 0 0 0.06785 0.04242 0 0.01498
10 0 0 0.01399 0.01865 0.00029 0.00115 0 0 0.00185
11 0 0 0.02362 0.00638 0 0.00107 0 0 0.00058
12 0 0 0.02337 0.00292 0 0 0 0.00002 0.00034
13 0 0 0.02393 0.00255 0.00119 0.0008 0.00002 0 0.00048
14 0 0 0.01773 0.01261 0 0 0 0 0
15 0 0 0.01973 0.00307 0 0 0 0 0.001
16 0 0 0.00685 0.02455 0.01041 0.00086 0 0 0.01333
17 0 0 0 0.00186 0.02298 0.02755 0 0 0.00225
18 0 0 0.00026 0.00328 0.03386 0.00038 0 0 0.00261
19 0 0 0.00116 0.01074 0.0466 0.00273 0 0 0.00122
20 0 0 0.00171 0.02421 0.0146 0.01697 0 0 0.00266
21 0 0 0 0 0 0.10537 0.0122 0 0
22 0 0 0.01074 0.00974 0.01882 0.00302 0 0 0.00063
23 0 0 0.00145 0.01277 0.00987 0.03153 0 0 0.00539
24 0 0 0.00109 0.04904 0.00199 0.04913 0.00147 0 0.00863
25 0 0 0.0177 0.0167 0 0.00013 0 0.00831 0.00291
26 0 0 0.01437 0.03091 0.00002 0.01721 0 0.00017 0.00205
27 0 0 0 0.00142 0 0.07422 0 0 0
28 0 0 0.00262 0.00222 0 0.06609 0.00109 0 0.00223
29 0 0 0 0.00909 0 0.0857 0 0 0.00038
30 0 0 0.00154 0.0146 0 0.09299 0.00181 0 0.00251
31 0 0 0.00404 0.00588 0.00034 0.00436 0 0 0.01456
32 0 0 0.00076 0.06023 0 0.01594 0 0 0.01038
33 0 0 0.004 0.03186 0.00005 0.02246 0 0.00005 0.02908
34 0 0 0.00271 0.03187 0 0.03959 0 0.00002 0.00814
35 0 0 0.00033 0.01488 0 0.08017 0.00164 0 0.01258
36 0 0 0.00041 0.0073 0 0.00756 0 0 0.0548
37 0 0 0.00649 0.0228 0 0.00782 0 0 0.0141
38 0 0 0.00064 0.04872 0 0.11375 0 0 0.0006
39 0 0 0.00007 0.00432 0 0.11805 0.00166 0 0.00382
40 0 0 0.00027 0.01702 0.00117 0.07196 0.00051 0 0.01452
41 0 0 0.01372 0.00869 0.00221 0.00069 0.00011 0 0.01908
42 0 0 0.00215 0.01208 0.02291 0.00117 0 0 0.00181
43 0 0 0 0.00415 0 0.09378 0 0 0
FAF4 Freight Traffic Assignment A-2 August 31st, 2016
Truck Equivalency Factors – Truck Trailer (TT)
Commodity Auto Livestock Bulk Flatbed Tank Day Van Reefer Logging Other
1 0 0 0.00236 0.09792 0 0.01831 0 0 0.00305
2 0 0 0.03312 0.00683 0.00121 0 0 0 0
3 0 0 0.01643 0.05417 0.00043 0.00965 0 0 0.00557
4 0 0 0.0024 0.0652 0.00229 0.01552 0 0 0.0026
5 0 0 0 0.01384 0 0 0.2178 0 0
6 0 0 0 0.06766 0 0.52158 0.02743 0 0
7 0 0 0 0.01609 0.00255 0.167 0 0 0.02212
8 0 0 0 0 0 0 0 0 0.09053
9 0 0 0 0 0 0 0 0 0
10 0 0 0.04803 0.00814 0.00047 0 0 0 0
11 0 0 0.03288 0.01714 0 0 0 0 0
12 0 0 0.03672 0.00355 0.00002 0 0 0 0.00136
13 0 0 0.04044 0.00133 0 0 0 0 0
14 0 0 0 0 0 0 0 0 0
15 0 0 0.01956 0.02797 0 0 0 0 0
16 0 0 0.01529 0 0.01659 0 0 0 0
17 0 0 0 0.06287 0.0246 0 0 0 0
18 0 0 0.00047 0.02735 0.01863 0 0 0 0
19 0 0 0.00855 0 0.01411 0.03128 0 0 0
20 0 0 0 0 0.04058 0.0037 0 0 0
21 0 0 0 0 0 0 0 0 0
22 0 0 0.00321 0.02528 0.03006 0.03581 0 0 0.0015
23 0 0 0.00466 0.01526 0.00955 0.15924 0 0 0
24 0 0 0 0.25704 0 0 0 0 0
25 0 0 0.0087 0.00147 0 0 0 0.02241 0.01327
26 0 0 0.09538 0.03896 0 0.00107 0 0.00071 0.01724
27 0 0 0 0 0 0.06453 0 0 0
28 0 0 0 0 0 1.03919 0 0 0
29 0 0 0 0 0 1 0 0 0
30 0 0 0 0 0 0.43478 0 0 0
31 0 0 0.0194 0.01707 0 0 0 0 0.01178
32 0 0 0.00386 0.0495 0 0.00575 0 0 0.09511
33 0 0 0.02786 0.04576 0 0.125 0 0 0.04695
34 0 0 0.03163 0.03692 0 0.00129 0 0.00044 0.00078
35 0 0 0 0.13673 0 0.3511 0 0 0
36 0 0 0.02531 0.07947 0 0.03572 0 0 0.00623
37 0 0 0.02199 0.05941 0 0 0 0 0.00491
38 0 0 0 0.5 0 0 0 0 0
39 0 0 0.04346 0.02042 0 0.07936 0 0 0
40 0 0 0 0.06769 0 0.02033 0 0 0.02866
41 0 0 0.06573 0.02041 0 0 0 0 0.00178
42 0 0 0 0.00708 0.05154 0.00145 0 0 0
43 0 0 0 0 0 0.15382 0 0 0
FAF4 Freight Traffic Assignment A-3 August 31st , 2016
Truck Equivalency Factors – Combination Semitrailer (CS)
Commodity Auto Livestock Bulk Flatbed Tank Day Van Reefer Logging Other
1 0 0.02634 0.00087 0.00628 0.00046 0.00116 0.00061 0 0
2 0 0.00006 0.03127 0.00162 0.00124 0.00056 0.00004 0 0
3 0 0.0005 0.00636 0.0114 0.00062 0.00443 0.01419 0 0
4 0 0.00028 0.00873 0.00598 0.01261 0.00691 0.00257 0 0
5 0 0 0 0.00071 0 0.00449 0.03397 0 0
6 0 0 0 0 0.00389 0.03253 0.00495 0 0
7 0 0 0 0.00023 0.00373 0.01631 0.01912 0 0
8 0 0 0 0.00045 0.00021 0.04709 0.00137 0 0
9 0 0 0 0 0 0.0333 0.00725 0 0
10 0 0 0.012 0.02245 0.00221 0.00072 0 0 0
11 0 0 0.03032 0.00064 0.00423 0.00016 0 0 0
12 0 0 0.03249 0.00175 0.00032 0.0001 0 0.00002 0
13 0 0 0.01708 0.00104 0.01462 0.00124 0 0 0
14 0 0 0.02508 0.00955 0 0.00143 0 0 0
15 0 0 0.03109 0 0 0.00053 0 0 0
16 0 0 0.00055 0 0.03505 0 0 0 0
17 0 0 0 0 0.02918 0.00044 0 0 0
18 0 0 0.00005 0.00033 0.02883 0.00059 0 0 0
19 0 0 0.0003 0.00153 0.03075 0.00344 0 0 0
20 0 0 0.00004 0.00467 0.0281 0.0054 0 0 0
21 0 0 0 0 0 0.02969 0.01779 0 0
22 0 0 0.01042 0.00925 0.01569 0.00166 0.00025 0 0
23 0 0 0 0.0013 0.0266 0.00896 0.0003 0 0
24 0 0 0.00033 0.00511 0.00599 0.03019 0.00065 0 0
25 0 0 0.00172 0.00586 0 0.00117 0 0.02563 0
26 0 0 0.00529 0.02031 0 0.00905 0.0001 0.00109 0
27 0 0 0 0.00495 0 0.02996 0.00046 0 0
28 0 0 0 0.00031 0 0.03765 0.0005 0 0
29 0 0 0 0.00071 0 0.03842 0.00187 0 0
30 0 0 0 0.00096 0 0.03345 0.00069 0 0
31 0 0 0.00288 0.01613 0.01163 0.00331 0.00005 0.00024 0
32 0 0.00027 0.00144 0.03045 0.00017 0.00344 0.00018 0.00036 0
33 0 0 0.00048 0.02839 0.0001 0.00839 0 0 0
34 0 0.00009 0.0001 0.03017 0 0.00621 0.00018 0 0
35 0 0 0 0.00344 0 0.03622 0 0 0
36 0.01607 0 0.00038 0.00722 0 0.01871 0 0 0
37 0.0003 0 0.00022 0.0187 0 0.0167 0 0.00102 0
38 0 0 0 0.00625 0 0.03851 0 0 0
39 0 0 0 0.00233 0 0.03413 0.00171 0 0
40 0 0 0.00006 0.00374 0 0.03022 0.00159 0 0.00478
41 0 0 0.02326 0.00207 0.00785 0.00289 0.00013 0 0
42 0 0 0 0.0015 0.03183 0.00323 0 0 0
43 0 0 0 0.0009 0 0.04007 0.00082 0 0
FAF4 Freight Traffic Assignment A-4 August 31st, 2016
Truck Equivalency Factors – Combination Double (DBL)
Commodity Auto Livestock Bulk Flatbed Tank Day Van Reefer Logging Other
1 0 0.02963 0 0 0 0 0 0 0
2 0 0 0.02166 0.00434 0.0003 0 0 0 0
3 0 0 0.00363 0.02674 0.00057 0.00214 0 0 0
4 0 0 0.0114 0.01572 0.00081 0.00436 0 0 0
5 0 0 0 0 0 0 0.0625 0 0
6 0 0 0 0 0 0.05882 0 0 0
7 0 0 0 0.01003 0.00116 0.00546 0.01426 0 0
8 0 0 0 0 0 0 0.06061 0 0
9 0 0 0 0 0 0 0 0 0
10 0 0 0.01584 0 0.01808 0 0 0 0
11 0 0 0.02342 0 0 0 0 0 0
12 0 0 0.02123 0 0.00041 0 0 0 0
13 0 0 0.00567 0.00066 0.01929 0 0 0 0
14 0 0 0.00851 0 0.0177 0 0 0 0
15 0 0 0.01622 0 0.00158 0 0 0 0
16 0 0 0 0 0.03043 0 0 0 0
17 0 0 0 0 0.00862 0.03876 0 0 0
18 0 0 0 0 0.02204 0 0 0 0
19 0 0 0.01252 0 0.01619 0 0 0 0
20 0 0 0.00395 0.01861 0.00758 0 0 0 0
21 0 0 0 0 0 0 0 0 0
22 0 0 0.00749 0.02477 0.00117 0 0 0 0
23 0 0 0 0 0 0 0.02186 0 0
24 0 0 0 0.01595 0 0.05582 0 0 0
25 0 0 0 0 0 0 0 0.02353 0
26 0 0 0.00151 0.02389 0 0.00368 0 0 0
27 0 0 0 0 0 0 0 0 0
28 0 0 0 0.0413 0 0 0 0 0
29 0 0 0 0 0 0 0 0 0
30 0 0 0 0 0 0.13793 0 0 0
31 0 0 0.00429 0.00411 0.01484 0 0 0 0
32 0 0 0.00232 0.01454 0 0 0 0.19078 0
33 0 0 0 0 0 0.0339 0 0 0
34 0 0 0 0.00878 0 0.03608 0 0 0
35 0 0 0 0 0 0 0 0 0
36 0 0 0 0 0 0.06667 0 0 0
37 0 0 0 0.02857 0 0 0 0 0
38 0 0 0 0 0 0.11765 0 0 0
39 0 0 0 0 0 0.03463 0 0 0
40 0 0 0 0 0 0.05285 0 0 0
41 0 0 0.01953 0 0 0 0 0 0
42 0 0 0 0 0 0 0 0 0
43 0 0 0 0 0 0.04439 0.00003 0 0
FAF4 Freight Traffic Assignment A-5 August 31st , 2016
Truck Equivalency Factors – Combination Triple (TPT)
Commodity Auto Livestock Bulk Flatbed Tank Day Van Reefer Logging Other
1 0 0 0 0 0 0 0 0 0
2 0 0 0 0 0 0 0 0 0
3 0 0 0 0 0 0 0 0 0
4 0 0 0 0 0 0 0 0 0
5 0 0 0 0 0 0 0 0 0
6 0 0 0 0 0 0 0 0 0
7 0 0 0 0 0 0 0 0 0
8 0 0 0 0 0 0 0 0 0
9 0 0 0 0 0 0 0 0 0
10 0 0 0 0 0 0 0 0 0
11 0 0 0 0 0 0 0 0 0
12 0 0 0.02454 0 0 0 0 0 0
13 0 0 0 0 0 0 0 0 0
14 0 0 0 0 0 0 0 0 0
15 0 0 0 0 0 0 0 0 0
16 0 0 0 0 0 0 0 0 0
17 0 0 0 0 0 0 0 0 0
18 0 0 0 0 0 0 0 0 0
19 0 0 0 0 0 0 0 0 0
20 0 0 0 0 0 0 0 0 0
21 0 0 0 0 0 0 0 0 0
22 0 0 0 0 0 0 0 0 0
23 0 0 0 0 0 0 0 0 0
24 0 0 0 0 0 0 0 0 0
25 0 0 0 0 0 0 0 0 0
26 0 0 0 0 0 0 0 0 0
27 0 0 0 0 0 0 0 0 0
28 0 0 0 0 0 0 0 0 0
29 0 0 0 0 0 0 0 0 0
30 0 0 0 0 0 0 0 0 0
31 0 0 0.02181 0 0 0 0 0 0
32 0 0 0 0 0 0 0 0 0
33 0 0 0 0 0 0 0 0 0
34 0 0 0 0.01752 0 0 0 0 0
35 0 0 0 0 0 0 0 0 0
36 0 0 0 0 0 0 0 0 0
37 0 0 0 0.01986 0 0 0 0 0
38 0 0 0 0 0 0 0 0 0
39 0 0 0 0 0 0 0 0 0
40 0 0 0 0 0 0 0 0 0
41 0 0 0 0 0 0 0 0 0
42 0 0 0 0 0 0 0 0 0
43 0 0 0 0 0 0.02557 0 0 0
FAF4 Freight Traffic Assignment A-6 August 31st, 2016
This page intentionally left blank
FAF4 Freight Traffic Assignment August 31st , 2016
Appendix B
FAF4 Commodities
FAF4 Freight Traffic Assignment B-1 August 31st, 2016
FAF Commodity Categories
Index Description
Index Description
1 Live animals and live fish 23 Chemical products and preparations
2 Cereal grains 24 Plastics and rubber
3 Other agricultural products 25 Logs and other wood in the rough
4 Animal feed 26 Wood products
5 Meat/seafood 27 Pulp, newsprint, paper, and paperboard
6 Milled grain products 28 Paper or paperboard articles
7 Other foodstuffs 29 Printed products
8 Alcoholic beverages 30 Textiles and leather
9 Tobacco products 31 Nonmetallic mineral products
10 Building stone 32 Base metal in primary or finished forms
11 Natural sands 33 Articles of base metal
12 Gravel and crushed stone 34 Machinery
13 Nonmetallic minerals 35 Electronic and electrical equipment
14 Metallic ores and concentrates 36 Motorized and other vehicles
15 Coal 37 Transportation equipment
16 Crude Petroleum 38 Precision instruments and apparatus
17 Gasoline and aviation turbine fuel 39 Furniture
18 Fuel oils 40 Miscellaneous manufactured products
19 Coal and petroleum products 41 Waste and scrap
20 Basic chemicals 42 Commodity unknown
21 Pharmaceutical products 43 Mixed freight
22 Fertilizers
FAF4 Freight Traffic Assignment B-2 August 31st, 2016
This page intentionally left blank